Wang Xiaoxiao, Wang Huan, Huang Jinfeng, Zhou Yifeng, Tzvetanov Tzvetomir
CAS Key Laboratory of Brain Function and Diseases and School of Life Sciences, University of Science and Technology of ChinaHefei, China; Centers for Biomedical Engineering, University of Science and Technology of ChinaHefei, China.
CAS Key Laboratory of Brain Function and Diseases and School of Life Sciences, University of Science and Technology of China Hefei, China.
Front Neurosci. 2017 Jan 10;10:616. doi: 10.3389/fnins.2016.00616. eCollection 2016.
The contrast sensitivity function that spans the two dimensions of contrast and spatial frequency is crucial in predicting functional vision both in research and clinical applications. In this study, the use of Bayesian inference was proposed to determine the parameters of the two-dimensional contrast sensitivity function. Two-dimensional Bayesian inference was extensively simulated in comparison to classical one-dimensional measures. Its performance on two-dimensional data gathered with different sampling algorithms was also investigated. The results showed that the two-dimensional Bayesian inference method significantly improved the accuracy and precision of the contrast sensitivity function, as compared to the more common one-dimensional estimates. In addition, applying two-dimensional Bayesian estimation to the final data set showed similar levels of reliability and efficiency across widely disparate and established sampling methods (from classical one-dimensional sampling, such as Ψ or staircase, to more novel multi-dimensional sampling methods, such as quick contrast sensitivity function and Fisher information gain). Furthermore, the improvements observed following the application of Bayesian inference were maintained even when the prior poorly matched the subject's contrast sensitivity function. Simulation results were confirmed in a psychophysical experiment. The results indicated that two-dimensional Bayesian inference of contrast sensitivity function data provides similar estimates across a wide range of sampling methods. The present study likely has implications for the measurement of contrast sensitivity function in various settings (including research and clinical settings) and would facilitate the comparison of existing data from previous studies.
跨越对比度和空间频率这两个维度的对比敏感度函数,在研究和临床应用中预测功能性视力方面至关重要。在本研究中,提出使用贝叶斯推理来确定二维对比敏感度函数的参数。与经典的一维测量方法相比,对二维贝叶斯推理进行了广泛模拟。还研究了其在使用不同采样算法收集的二维数据上的性能。结果表明,与更常见的一维估计相比,二维贝叶斯推理方法显著提高了对比敏感度函数的准确性和精度。此外,将二维贝叶斯估计应用于最终数据集,在广泛不同且既定的采样方法(从经典的一维采样,如Ψ或阶梯法,到更新颖的多维采样方法,如快速对比敏感度函数和费舍尔信息增益)中显示出相似水平的可靠性和效率。此外,即使先验与受试者的对比敏感度函数匹配不佳,应用贝叶斯推理后观察到的改进仍然保持。模拟结果在一项心理物理学实验中得到证实。结果表明,对比敏感度函数数据的二维贝叶斯推理在广泛的采样方法中提供了相似的估计。本研究可能对各种环境(包括研究和临床环境)中对比敏感度函数的测量具有启示意义,并将有助于比较先前研究中的现有数据。